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Implicit Generative Copulas

About

Copulas are a powerful tool for modeling multivariate distributions as they allow to separately estimate the univariate marginal distributions and the joint dependency structure. However, known parametric copulas offer limited flexibility especially in high dimensions, while commonly used non-parametric methods suffer from the curse of dimensionality. A popular remedy is to construct a tree-based hierarchy of conditional bivariate copulas. In this paper, we propose a flexible, yet conceptually simple alternative based on implicit generative neural networks. The key challenge is to ensure marginal uniformity of the estimated copula distribution. We achieve this by learning a multivariate latent distribution with unspecified marginals but the desired dependency structure. By applying the probability integral transform, we can then obtain samples from the high-dimensional copula distribution without relying on parametric assumptions or the need to find a suitable tree structure. Experiments on synthetic and real data from finance, physics, and image generation demonstrate the performance of this approach.

Tim Janke, Mohamed Ghanmi, Florian Steinke• 2021

Related benchmarks

TaskDatasetResultRank
Generative ModelingMNIST--
13
Generative ModelingCifar (n = 10000, d = 1024)
Wasserstein-2 (W2)33.09
6
Modelling dependencemagic
W2 Distance1.69
6
Modelling dependenceDry Bean
W2 Metric1.66
6
Modelling dependenceRobocup
W2 Distance4.13
6
Generative Modelingmagic
Training Time2
5
Generative ModelingDry Bean
Training Time3
5
Generative ModelingDigits
Training Time11
5
Generative ModelingRobocup
Training Time9
5
Generative ModelingCIFAR
Training Time14
5
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